4.1 Article

Towards a Machine Vision-Based Yield Monitor for the Counting and Quality Mapping of Shallots

Journal

FRONTIERS IN ROBOTICS AND AI
Volume 8, Issue -, Pages -

Publisher

FRONTIERS MEDIA SA
DOI: 10.3389/frobt.2021.627067

Keywords

precision agriculture; yield estimation; machine vision; watershed segmentation; shape detection; size estimation; quality assessement

Categories

Funding

  1. Mitacs Accelerate program [IT08604]
  2. Delfland
  3. government of Canada through the NSERC/Discovery grant program

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Specialty crops require more resources and are sensitive to growth conditions compared to field crops, but they produce higher value products. Computer and machine vision technology has improved quality assessment and yield estimation for fruit crops, but methods for vegetable crops are still developing. This study introduced a machine vision-based yield monitor for vegetable crops, specifically for shallots, which showed promising results but also highlighted challenges such as occlusion and lighting conditions affecting performance. Further enhancements are planned for the system to benefit small vegetable crop producers with real-time harvest information.
In comparison to field crops such as cereals, cotton, hay and grain, specialty crops often require more resources, are usually more sensitive to sudden changes in growth conditions and are known to produce higher value products. Providing quality and quantity assessment of specialty crops during harvesting is crucial for securing higher returns and improving management practices. Technical advancements in computer and machine vision have improved the detection, quality assessment and yield estimation processes for various fruit crops, but similar methods capable of exporting a detailed yield map for vegetable crops have yet to be fully developed. A machine vision-based yield monitor was designed to perform size categorization and continuous counting of shallots in-situ during the harvesting process. Coupled with a software developed in Python, the system is composed of a video logger and a global navigation satellite system. Computer vision analysis is performed within the tractor while an RGB camera collects real-time video data of the crops under natural sunlight conditions. Vegetables are first segmented using Watershed segmentation, detected on the conveyor, and then classified by size. The system detected shallots in a subsample of the dataset with a precision of 76%. The software was also evaluated on its ability to classify the shallots into three size categories. The best performance was achieved in the large class (73%), followed by the small class (59%) and medium class (44%). Based on these results, the occasional occlusion of vegetables and inconsistent lighting conditions were the main factors that hindered performance. Although further enhancements are envisioned for the prototype system, its modular and novel design permits the mapping of a selection of other horticultural crops. Moreover, it has the potential to benefit many producers of small vegetable crops by providing them with useful harvest information in real-time.

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